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Machine-vision based handheld embedded system to extract quality parameters of citrus cultivars

机译:基于机器视觉的手持式嵌入式系统,提取柑橘品种质量参数

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摘要

This manuscript introduces a handheld machine vision based system design that is capable of standalone operation using touch screen based user interface and also can operate through smartphone based android app. System uses 8.0 Megapixel, 1080p CMOS camera interfaced with quad-core ARM Cortex-A53 processor based computing platform (Raspberry Pi computing platform) for real time image acquisition and processing. Multi-spectral led array has been used to compensate the effect of external illumination and also to increase the accuracy of measurement. System stores acquired images on interfaced 16.0 G.B. external memory card with date and time information. Various segmentation methods have been explored to extract region of interest in acquired images and compared based on the capability of segmentation in real-time. Segmented images have been used to extract different features such as color, shape, size and texture using various image processing algorithms. Extracted features have been fused together and undergone through different statistical and neural network based modelling methods to correlate features dataset generated using handheld system with standard quality parameters of collected citrus samples. Performance of the established correlation models for various quality parameters such as chlorophyll, sugar content, TSS, weight, pH and volume have been evaluated and best performed models for each quality parameter has been used to train the developed handheld machine vision based system. Overall system is battery operated and also enables cloud connectivity using on-board Wi-Fi facility or smartphone based android app. Overall device has dimensions of 12.0 x 6.0 x 4.0 (in cm), weighs 139.07 g and runs with 5-V rechargeable battery.
机译:此手稿介绍了一种基于手持式计算机视觉的系统设计,可以使用基于触摸屏的用户界面独立运行,并且还可以通过基于智能手机的Android应用程序操作。系统使用8.0万像素,1080P CMOS相机与四核ARM Cortex-A53处理器的计算平台(Raspberry PI Computing平台)接口,用于实时图像采集和处理。多光谱LED阵列已用于补偿外部照明的效果,也可以提高测量的准确性。系统存储在接口16.0 G.B上获取的图像。外部存储卡与日期和时间信息。已经探索了各种分割方法以提取所获得的图像的兴趣区域,并基于实时分割的能力进行比较。分段图像已用于利用各种图像处理算法提取不同的特征,例如颜色,形状,大小和纹理。提取的特征已经融合在一起,通过不同的统计和神经网络的基于基于统计和神经网络的建模方法来关联使用手持系统生成的数据集,其中包含收集的柑橘样品的标准质量参数。已经评估了诸如叶绿素,糖含量,TSS,重量,pH和体积之类的各种质量参数的既定相关模型的性能,并为每个质量参数进行了最佳执行模型,用于训练发达的手持机视觉基于系统。整体系统是电池操作,还可以使用板载Wi-Fi设施或基于智能手机的Android应用程序实现云连接。整体装置的尺寸为12.0 x 6.0 x 4.0(以cm为单位),重139.07克,并用5V可充电电池运行。

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